Publication | Closed Access
Reinforcing Pretrained Models for Generating Attractive Text Advertisements
18
Citations
21
References
2021
Year
Unknown Venue
Artificial IntelligenceEngineeringMachine LearningDeep ReinforcementTargeted AdvertisingCommunicationLarge Language ModelAttractive Text AdvertisementsText MiningAd AttractivenessNatural Language ProcessingComputational LinguisticsManagementOnline AdvertisingRobot LearningMachine TranslationLarge Ai ModelPre-trained ModelsComputer ScienceAdvertisingMarketingRetrieval Augmented GenerationDeep Reinforcement LearningLanguage Generation
We study how pretrained language models can be enhanced by using deep reinforcement learning to generate attractive text advertisements that reach the high quality standard of real-world advertiser mediums. To improve ad attractiveness without hampering user experience, we propose a model-based reinforcement learning framework for text ad generation, which constructs a model for the environment dynamics and avoids large sample complexity. Based on the framework, we develop Masked-Sequence Policy Gradient, a reinforcement learning algorithm that integrates efficiently with pretrained models and explores the action space effectively. Our method has been deployed to production in Microsoft Bing. Automatic offline experiments, human evaluation, and online experiments demonstrate the superior performance of our method.
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